Adquisición y Procesamiento de Señales Biomédicas en Tecnologías de Borde

Ingeniería Biomédica

Ph.D. Pablo Eduardo Caicedo Rodríguez

2025-01-20

Adquisición y Procesamiento de Señales Biomédicas en Tecnologías de Borde - APSB

El Profesor

Educación

Doctor en Ciencias de la Electrónica. Magister en Ingeniería Electrónica y Telecomunicaciones Ingeniero en Electrónica y Telecomunicaciones

Intereses

Procesamiento de Imágenes, Dispositivos para el análisis de movimiento humano, ciencia de los datos, IA.

Desempeño

Profesor del Centro de Estudios en Biomédica y Biotecnogía

Profesor en la línea de Procesmiento de Señales e Imágenes

Contacto:

pablo.caicedo@escuelaing.edu.co

Contenido del curso

  1. Introducción a inteligencia artificial en el borde (EDGE AI).
  2. Hardware y software para EDGE AI.
  3. El flujo de trabajo de EDGE AI.
  4. Diseño, desarrollo y evaluación de sistemas EDGE AI.

Estrategías de Aprendizaje

  • Clases magistrales
  • Desarrollo de ejercicios en clase
  • Prácticas de laboratorio, donde se utilizarán herramientas computacionales y se aplicarán conocimientos y destrezas adquiridas en otros cursos
  • Lecturas de la temática a tratar, previas a las clases magistrales
  • Lecturas de artículos científicos de interés para el área de procesamiento de señales e imágenes
  • Desarrollo de talleres fuera de la clase
  • Proyecto práctico de fin de curso

Evaluación

  • Laboratorios (60%)
  • Proyecto Final (40%)

Evaluación

Primer tercio (30%) Segundo tercio (30%) Tercer tercio (40%)
Laboratorios (30%) Laboratorios (30%) Proyecto final (40%)

Recursos

Clases

Martes 8:30am - 10:00am F-109. Jueves 8:30am - 10:00am F-201.

Interpretes: R y python.

OS: Linux

Lenguajes: C/C++

IDE: Visual Studio Code, Google Colaboratory, RStudio, PyCharm, Dataspell

Bibliografía

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